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Distributed Control for a Multi-Agent System to Pass through a Connected Quadrangle Virtual Tube

2022-07-14 05:35:17
Yan Gao, Chenggang Bai, Quan Quan

Abstract

In order to guide the multi-agent system in a cluttered environment, a connected quadrangle virtual tube is designed for all agents to keep moving within it, whose basis is called the single trapezoid virtual tube. There is no obstacle inside the tube, namely the area inside the tube can be seen as a safety zone. Then, a distributed swarm controller is proposed for the single trapezoid virtual tube passing problem. This issue is resolved by a gradient vector field method with no local minima. Formal analyses and proofs are made to show that all agents are able to pass the single trapezoid virtual tube. Finally, a modified controller is put forward for convenience in practical use. For the connected quadrangle virtual tube, a modified switching logic is proposed to avoid the deadlock and prevent agents from moving outside the virtual tube. Finally, the effectiveness of the proposed method is validated by numerical simulations and real experiments.

Abstract (translated)

URL

https://arxiv.org/abs/2207.06666

PDF

https://arxiv.org/pdf/2207.06666.pdf


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